CT-DQN: Control-Tutored Deep Reinforcement Learning

F. D. Lellis, M. Coraggio, G. Russo, Mirco Musolesi, M. Bernardo
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引用次数: 1

Abstract

One of the major challenges in Deep Reinforcement Learning for control is the need for extensive training to learn the policy. Motivated by this, we present the design of the Control-Tutored Deep Q-Networks (CT-DQN) algorithm, a Deep Reinforcement Learning algorithm that leverages a control tutor, i.e., an exogenous control law, to reduce learning time. The tutor can be designed using an approximate model of the system, without any assumption about the knowledge of the system's dynamics. There is no expectation that it will be able to achieve the control objective if used stand-alone. During learning, the tutor occasionally suggests an action, thus partially guiding exploration. We validate our approach on three scenarios from OpenAI Gym: the inverted pendulum, lunar lander, and car racing. We demonstrate that CT-DQN is able to achieve better or equivalent data efficiency with respect to the classic function approximation solutions.
CT-DQN:控制辅导深度强化学习
深度强化学习用于控制的主要挑战之一是需要大量的训练来学习策略。基于此,我们提出了控制辅导深度q网络(CT-DQN)算法的设计,这是一种深度强化学习算法,利用控制辅导,即外生控制律来减少学习时间。导师可以使用系统的近似模型来设计,而不需要对系统动力学知识有任何假设。如果单独使用,不期望它能够实现控制目标。在学习过程中,导师偶尔会提出一个动作,从而部分地指导探索。我们在OpenAI Gym的三个场景中验证了我们的方法:倒立摆、月球着陆器和赛车。我们证明了CT-DQN能够相对于经典的函数近似解实现更好或等效的数据效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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